Development and validation of AI-based pre-screening of large bowel biopsies

Author:

Bilal MohsinORCID,Tsang Yee Wah,Ali Mahmoud,Graham Simon,Hero Emily,Wahab Noorul,Dodd Katherine,Sahota Harvir,Wu Shaobin,Lu Wenqi,Jahanifar Mostafa,Robinson Andrew,Azam Ayesha,Benes Ksenija,Nimir Mohammed,Hewitt Katherine,Bhalerao Abhir,Eldaly Hesham,Ahmed Raza Shan E,Gopalakrishnan Kishore,Minhas Fayyaz,Snead David,Rajpoot Nasir

Abstract

AbstractBackgroundHistopathological examination is a pivotal step in the diagnosis and treatment planning of many major diseases. With the aims of facilitating diagnostic decision-making and improving the use of pathologists’ time, we developed an AI-based pre-screening tool that analyses whole slide images (WSIs) of large bowel biopsies to identify normal, inflammatory, and neoplastic biopsies.MethodsTo learn the differential histological patterns from digitised WSIs of large bowel biopsy slides stained with Haematoxylin and Eosin (H&E), our proposed weakly supervised deep learning method uses only slide-level diagnostic labels and no detailed cell or region-level annotations. The proposed method was developed on an internal cohort of biopsy slides (n=5054) from a single laboratory labelled with corresponding diagnostic categories assigned by pathologists. Performance of the tool was evaluated on the internal development cohort (n=5054) in a cross-validation setting, and three external unseen cohorts (n=1536) for independent validation.FindingsThe proposed tool demonstrates high degree of accuracy to assist with the pre-screening of large bowel biopsies, being able to identify neoplastic biopsies (AUROC = 0·993), inflammatory biopsies (AUROC = 0·966) and all abnormal biopsies (AUROC = 0·979). On the three independent validation cohorts, it achieves AUROC values of 0·943, 0·958 and 0·964 for the detection of abnormal biopsies. Analysis of saliency maps confirms the representation of disease heterogeneity in model predictions and their association with relevant histological features. Interestingly, after examining diagnostic discrepancies between the proposed AI tool and original diagnostic labels, a panel of pathologists found that the proposed tool correctly identified a number of abnormal slides that had been initially reported as normal.InterpretationsThe proposed tool with its high sensitivity of detecting abnormal colorectal biopsies promises significant improvements in clinical workflow efficiency and assistance in diagnostic decision-making through pre-screening of normal biopsies.FundingInnovate UK on behalf of UK Research and Innovation.

Publisher

Cold Spring Harbor Laboratory

Reference28 articles.

1. National Institute for Health and Care Excellence [Internet]. https://www.nice.org.uk/guidance/ng151: NICE Guideline No. 151; 2020 [cited 2022 Dec 9] p. 51. (Colorectal cancer). Available from: https://www.nice.org.uk/guidance/ng151

2. The American Cancer Society [Internet]. cancer.org: cancer.org; 2020 p. 15. (Key Statistics for Colorectal Cancer). Report No.: 1.800.227.2345. Available from: https://www.cancer.org/content/dam/CRC/PDF/Public/8604.00.pdf

3. Shmerling RH. Understanding the results of your colonoscopy. [cited 2021 Aug 9]; Available from: https://www.health.harvard.edu/staying-healthy/understanding-the-results-of-your-colonoscopy

4. Colorectal Cancer: Diagnosis. [cited 2021 Aug 9]; Available from: https://www.cancer.net/cancer-types/colorectal-cancer/diagnosis

5. Bainbridge S , Cake R , Meredith M , Furness P , Gordon B. Testing times to come? An evaluation of pathology capacity across the UK [Internet]. United Kingdom: Cancer Research UK; 2016 Nov [cited 2022 Sep 3] p. 60. Available from: https://www.cancerresearchuk.org/sites/default/files/testing_times_to_come_nov_16_cruk.pdf

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